HyperAI超神经

Metric Learning On Cars196

评估指标

R@1

评测结果

各个模型在此基准测试上的表现结果

模型名称
R@1
Paper TitleRepository
Gradient Surgery86.5Dissecting the impact of different loss functions with gradient surgery-
Hyp-DINO89.2Hyperbolic Vision Transformers: Combining Improvements in Metric Learning
Hyp-ViT86.5Hyperbolic Vision Transformers: Combining Improvements in Metric Learning
BN-Inception + Proxy-Anchor88.3Proxy Anchor Loss for Deep Metric Learning
Margin + DAS88.34DAS: Densely-Anchored Sampling for Deep Metric Learning
Group Loss85.6The Group Loss for Deep Metric Learning
ABE-8-51285.2Attention-based Ensemble for Deep Metric Learning-
ResNet50 (128) + PADS83.5PADS: Policy-Adapted Sampling for Visual Similarity Learning
MS + SEC + DAS87.8DAS: Densely-Anchored Sampling for Deep Metric Learning
SCT(64)73.2Hard negative examples are hard, but useful
ProxyAnchor + DIML87.01Towards Interpretable Deep Metric Learning with Structural Matching
ResNet-50 + Intra-Batch88.1Learning Intra-Batch Connections for Deep Metric Learning
EfficientDML-VPTSP-G/51291.2Learning Semantic Proxies from Visual Prompts for Parameter-Efficient Fine-Tuning in Deep Metric Learning
EPSHN(512)82.7Improved Embeddings with Easy Positive Triplet Mining
NED91.5Calibrated neighborhood aware confidence measure for deep metric learning-
ResNet-50 + Margin79.6Sampling Matters in Deep Embedding Learning
Recall@k Surrogate loss (ResNet-50)88.3Recall@k Surrogate Loss with Large Batches and Similarity Mixup
ABE + HORDE88.0Metric Learning With HORDE: High-Order Regularizer for Deep Embeddings
ResNet-50 + Metrix89.6It Takes Two to Tango: Mixup for Deep Metric Learning
Recall@k Surrogate loss (ViT-B/16)89.5Recall@k Surrogate Loss with Large Batches and Similarity Mixup
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